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Spatio-Temporal Similarity Volume Aggregation for Open-Vocabulary Action Recognition

About

Recent Open-Vocabulary Action Recognition (OVAR) methods typically aggregate visual features into a global representation before computing text alignment, a process that obscures local patch information and fine-grained spatio-temporal cues. We propose Similarity Volume Aggregation (SimVA), a framework that constructs a dense 4D spatio-temporal similarity volume from patch-level visual-text similarities. SimVA constructs a spatio-temporal similarity volume over local video tokens and action classes, and employs class sampling to ensure similarity aggregation scalable to large vocabularies. The similarity volume is refined by spatial aggregation, which contextualizes local similarity patterns to improve intra-frame consistency. Motion-aware modulation further injects inter-frame variation cues, highlighting dynamically changing regions. Mamba-based temporal aggregation then models the evolution of class-conditioned similarity patterns across frames. By maintaining dense visual-text correspondence, SimVA effectively transfers CLIP to video action recognition, achieving competitive performance across zero-shot, few-shot, and base-to-novel benchmarks.

Yerim So, Jiyeong Kim, Jiwon Yoon, Dongbo Min• 2026

Related benchmarks

TaskDatasetResultRank
Action RecognitionUCF-101
Top-1 Acc94.4
225
Action RecognitionSSV2
Top-1 Acc15.2
142
Action RecognitionKinetics-600
Top-1 Acc78.1
97
Action RecognitionHMDB-51
Accuracy62.2
55
Action RecognitionHMDB-51
Base Accuracy75.4
51
Action RecognitionUCF-101
Base Accuracy95.5
44
Action RecognitionHMDB-51
Top-1 Accuracy70.1
36
Video Action RecognitionEfficiency Benchmarking (val)
GFLOPS315
11
Action RecognitionSS v2
Base Score18
8
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